Reinforcement learning is an area of machine learning and computer science concerned with how to select an action in a state that maximizes a numerical reward in a particular environment.

learn more… | top users | synonyms

0
votes
0answers
15 views

Why Eligibility trace of TD(lampda) + 1

I'm foreigner. May be my English is not good. So, This is eligibility trace value et(s) =  et-1(s) if s != st et(s) =  et-1(s) + 1 if s = st Why +1 , not +2 or +3 or +100
1
vote
0answers
28 views

Questions about Q-Learning using Neural Networks

I have implemented Q-Learning as described in, http://web.cs.swarthmore.edu/~meeden/cs81/s12/papers/MarkStevePaper.pdf In order to approx. Q(S,A) I use a neural network structure like the following, ...
0
votes
1answer
17 views

Q learning computation: states unknown

I am confused about how to implement a simple q_learning algorithm. I am referring to this nice docummentation: http://artint.info/html/ArtInt_265.html. The given formula is Q[s,a] ←Q[s,a] + α(r+ ...
0
votes
1answer
30 views

Is Q-Learning Algorithm's implementation recursive?

I am trying to implement the Q-Learning. The general algorithm from here is as below In the statement I just don't get it that should i implement the above statement of the original pseudo-code ...
1
vote
0answers
23 views

Reinforcement learning in netlogo

I'm trying to do a model of reinforcement learning but I can't get my turtles to hatch correctly. Here's how the program is meant to work. To start, a state is chosen at random. This is the ...
1
vote
2answers
121 views

multiply numbers on all paths and get a number with minimum number of zeros

I have m*n table which each entry have a value . start position is at top left corner and I can go right or down until I reach lower right corner. I want a path that if I multiply numbers on that ...
1
vote
1answer
46 views

Reinforcement learning algorithms for continuous states, discrete actions

I'm trying to find optimal policy in environment with continuous states (dim. = 20) and discrete actions (3 possible actions). And there is a specific moment: for optimal policy one action (call it ...
1
vote
1answer
45 views

Implementations of Hierarchical Reinforcement Learning

Can anyone recommend a reinforcement learning library or framework that can handle large state spaces by abstracting them? I'm attempting to implement the intelligence for a small agent in a game ...
0
votes
1answer
39 views

Partially Observable Markov Decision Process Optimal Value function

I understood how belief states are updated in POMDP. But in Policy and Value function section, in http://en.wikipedia.org/wiki/Partially_observable_Markov_decision_process I could not figure out how ...
0
votes
1answer
50 views

matlab simulation for value functions

I want to simulate the following value functions. d is a decision matrix x=t+beta * w' y=alpha*(c+beta * v') v=max{x , y} if x>y then v=x and d= 2 if x a=phi * t+beta * w' b=phi * c+beta * v' ...
0
votes
1answer
43 views

Pybrain Reinforcement Learning dynamic output

Can you use Reinforcement Learning from Pybrain on dynamic changing output. For example weather: lets say you have 2 attributes Humidity and Wind and the output will be either Rain or NO_Rain ( and ...
0
votes
0answers
36 views

NLTK NER: Continuous Learning

I have been trying to use NER feature of NLTK. I want to extract such entities from the articles. I know that it can not be perfect in doing so but I wonder if there is human intervention in between ...
1
vote
1answer
58 views

How do you update the weights in function approximation with reinforcement learning?

My SARSA with gradient-descent keep escalating the weights exponentially. At Episode 4 step 17 the value is already nan Exception: Qa is nan e.g: 6) Qa: Qa = -2.00890180632e+303 7) NEXT Qa: Next ...
0
votes
1answer
47 views

How are eligibility traces with sarsa calculated?

Regarding SARSA with reinforcement learning, I'm trying to implement eligibility traces (forward looking). I found this image: I'm uncertain what the 'For all s,a:" means (5th line from below) ...
-2
votes
1answer
106 views

Best/Easiest module for AI Learning? [closed]

I read this How can I make a AI learn to play a game from zero? A little example, let's say the AI goes to play blackjack, discount all the splits, cards in the deck and so on, the AI could either ...
0
votes
2answers
180 views

Is there a better way than this to implement Softmax Action Selection for Reinforcement Learning?

I am implementing Softmax Action Selection policy for a reinforcement learning task (http://webdocs.cs.ualberta.ca/~sutton/book/ebook/node17.html). I came with this solution, but I think there is ...
0
votes
0answers
67 views

3D-Space learning and prediction Matlab

I want suggestions about learning and predicting some object's position before hitting the one out of four sides of wall, in Matlab. I have some priority according to side of wall, and of-course all ...
0
votes
2answers
79 views

PyBrain Reinforcement Learning Input Buffer Incorrect

I am trying to set up PyBrain for reinforcement learning, but keep on getting the same error when I try to get an action for the first time. This line in module.py is throwing an assert failure ...
2
votes
0answers
74 views

Reinforcement Learning for Continuous State Spaces with Discrete Actions (in NetLogo)

For anybody unfamiliar, NetLogo is an agent-based modeling language. In this case the agents are simulating organisms in a dynamic environment where they search for energy. The energy moves ...
0
votes
1answer
120 views

Neural Network and Temporal Difference Learning

I have a read few papers and lectures on temporal difference learning (some as they pertain to neural nets, such as the Sutton tutorial on TD-Gammon) but I am having a difficult time understanding the ...
0
votes
1answer
88 views

Momentum in neural networks

Neural networks and momentum Should the momentum factor preferably relate to [both the dataset instance and the individual weights] or [just the weights]. Eg: def get_momentum( instance, weight ): ...
1
vote
1answer
67 views

is Q-learning without a final state even possible?

I have to solve this problem with Q-learning. Well, actually I have to evaluated a Q-learning based policy on it. I am a tourist manager. I have n hotels, each can contain a different number of ...
1
vote
1answer
92 views

Q-Learning convergence to optimal policy

I am using rlglue based python-rl framework for q-learning. My understanding is that over number of episodes, the algorithm converges to an optimal policy (which is a mapping which says what action to ...
2
votes
2answers
336 views

Optimal epsilon (ϵ-greedy) value

ϵ-greedy policy I know the Q-learning algorithm should try to balance between exploration and exploitation. Since I'm a beginner in this field, I wanted to implement a simple version of ...
2
votes
1answer
68 views

Q-learning: What is the correct state for reward calculation

Q learning - rewards I'm struggling to interpret the pseudocode for the Q learning algorithm: 1 For each s, a initialize table entry Q(a, s) = 0 2 Observe current state s 3 Do forever: 4 ...
11
votes
1answer
297 views

When to use a certain Reinforcement Learning algorithm?

I'm studying Reinforcement Learning and reading Sutton's book for a university course. Beside the classic PD, MC, TD and Q-Learning algorithms, I'm reading about policy gradient methods and genetic ...
1
vote
1answer
103 views

Q-Learning: Can you move backwards?

I'm looking over a sample exam and there is a question on Q-learning, I have included it below. In the 3rd step, how come the action taken is 'right' rather than 'up' (back to A2). It appears the Q ...
1
vote
1answer
428 views

Q Learning Algorithm Issue

I'm trying to do a simple Q learning algorithm, but for whatever reason it doesn't converge. The agent should basically get from one point on the 5x5 grid to the goal one. When I run it it seems to ...
0
votes
1answer
47 views

What are the things that I should save to a file/db with Reinforcement Learning?

I'm trying to get into machine learning, and decided to try things out for myself. I wrote a small tic-tac-toe game. So far, the computer plays against itself using random moves. Now, I want to apply ...
3
votes
1answer
199 views

Implementing reinforcement learning in NetLogo (Learning in multi-agent models)

I am thinking to implement a learning strategy for different types of agents in my model. To be honest, I still do not know what kind of questions should I ask first or where to start. I have two ...
2
votes
0answers
53 views

Parametrization of sparse sampling algorithms

I have a question about the parametrization of C, H and lambda in the paper: "A Sparse Sampling Algorithm for Near-Optimal Planning in Large Markov Decision Processes" (or for anyone with some general ...
2
votes
0answers
143 views

Encog : Reinforcement Learning / Actor-Critic Model

I have a basic neural net problem where I want a "rocket" to maintain it's altitude at a given height. (This is a simple version of the problem, it will get more complex). I am using the encog ...
0
votes
1answer
173 views

Q-learning (multiple goals)

i have just started to study Q-learning and see the possibilities of using Q-learning to solve my problem. Problem: I am supposed to detect a certain combination of data, i have four matrices that ...
1
vote
1answer
123 views

How to apply reinforcement learning?

I understand it in concept. You have an agent and an environment. And then you have a set of states, which each have a value. The agent then either choses to "explore" or "exploit" and modifies it's ...
0
votes
1answer
126 views

How to calculate the value function in reinforcement learning

Could anybody help to explain how to following value function been generated, the problem and solution are attached, I just don't know how the solution is generated. thank you! STILL NEED HELP ...
1
vote
0answers
125 views

Memory error after running pyBrain NFQ learner for a few minutes

O. Using reinforcement learning from pyBrain we are trying to solve a game. We use NFQ and an ActionValueNetwork as controller. We have our self-made task and are using the experiment setup from ...
1
vote
2answers
54 views

Reinforcement Learning without Successor State

I'm attempting to pose a problem as a reinforcement learning problem. My difficulty is that the state which an agent is in changes randomly. They must simply choose an action within the state they are ...
4
votes
2answers
330 views

n-armed bandit simulation in R

I'm using Sutton & Barto's ebook Reinforcement Learning: An Introduction to study reinforcement learning. I'm having some issues trying to emulate the results (plots) on the action-value page. ...
1
vote
1answer
178 views

Setting gamma and lambda in Reinforcement Learning

In any of the standard Reinforcement learning algorithms that use generalized temporal differencing (e.g. SARSA, Q-learning), the question arises as to what values to use for the lambda and gamma ...
2
votes
2answers
157 views

Qlearning - Defining states and rewards

I need some help with solving a problem that uses the Q-learning algorithm. Problem description: I have a rocket simulator where the rocket is taking random paths and also crashes sometimes. The ...
5
votes
0answers
64 views

Learning of Outcome Space Given Noisy Actions and Non-Monotonic Reinforcment

I'm looking to construct or adapt a model preferably based in RL theory that can solve the following problem. Would greatly appreciate any guidance or pointers. I have a continuous action space, ...
0
votes
1answer
330 views

Berkeley Pac-Man Project: features divided through by 10

I am busy coding reinforcement learning agents for the game Pac-Man and came across Berkeley's CS course's Pac-Man Projects, specifically the reinforcement learning section. For the approximate ...
3
votes
1answer
353 views

SARSA algorithm for average reward problems

My question is about using the SARSA algorithm in reinforcement learning for an undiscounted, continuing (non-episodic) problem (can it be used for such a problem?) I have been studying the textbook ...
0
votes
1answer
336 views

Training Neural Networks with big linear output

I am programming a Feed Forward Neural Network which I want to use in combination with Reinforcement Learning. I have one hidden layer with tanh as activation function and a linear output layer. I ...
1
vote
1answer
147 views

Action constraints in actor-critic reinforcement learning

I've implemented the natural actor-critic RL algorithm on a simple grid world with four possible actions (up,down,left,right), and I've noticed that in some cases it tends to get stuck oscillating ...
1
vote
1answer
249 views

Weight update - Reinforcement Learning + Neural Networks

I am currently trying to understand how TD-Gammon works and have two questions: 1) I found an article which explains the weight update. It consists of three part. The last part is an differentiation ...
1
vote
2answers
357 views

How to implement Q-learning with a neural network?

I have created a neural network with 2 inputs nodes, 4 hidden nodes and 3 output nodes. The initial weights are random between -1 to 1. I used backpropagation method to update the network with TD ...
1
vote
1answer
2k views

Q-Learning in combination with neural-networks (rewarding understanding)

As far as my understanding is, it's possible to replace a look-up-table for Q-values (state-action-pair-evaluation) by a neural network for estimating these state-action pairs. I programmed a small ...
3
votes
1answer
219 views

Multi-Criteria Optimization with Reinforcement Learning

I am working on the power management of a system. The objectives that I am looking to minimize are power consumption and average latency. I have a single objective function having the linearly ...
3
votes
2answers
390 views

Unbounded increase in Q-Value, consequence of recurrent reward after repeating the same action in Q-Learning

I'm in the process of development of a simple Q-Learning implementation over a trivial application, but there's something that keeps puzzling me. Let's consider the standard formulation of Q-Learning ...